Landslide susceptibility evaluation and interpretability analysis of typical loess areas based on deep learning

Lili Chang , Gulian Xing , Hui Yin , Lei Fan , Rui Zhang , Nan Zhao , Fei Huang , Juan Ma
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引用次数: 1

Abstract

Loess areas have a unique geological environment, and geological disasters occur there frequently. In this work, the typical loess area Lvliang was used as the study area. Using the historical landslide catalog, 12 influencing factors were chosen by integrating multisource heterogeneous spatiotemporal big data such as remote sensing, ground investigation, and basic geography. Based on frequency ratio (FR) and improved TabNet deep learning technology, landslide susceptibility evaluation and uncertainty analysis were performed. The results showed that the TabNet evaluation model using FR and self-supervised learning performs well and has the highest FR in extremely high-prone areas. Compared with other methods, this method has the highest scores in areas under the curve and susceptibility index distribution and the lowest uncertainty. Moreover, the SHAP method was used for interpretability analysis of the model. Therefore, this study can provide new ideas for landslide susceptibility management.

基于深度学习的典型黄土区滑坡易发性评价与可解释性分析
黄土地区地质环境独特,地质灾害频发。本文以典型的黄土区吕梁为研究区域。利用历史滑坡目录,综合遥感、地面调查、基础地理等多源异质时空大数据,选取12个影响因素。基于频率比(FR)和改进的TabNet深度学习技术,进行了滑坡易感性评估和不确定性分析。结果表明,使用FR和自我监督学习的TabNet评估模型表现良好,在极易发地区具有最高的FR。与其他方法相比,该方法在曲线下区域和易感性指数分布方面得分最高,不确定性最低。此外,还使用SHAP方法对模型进行了可解释性分析。因此,本研究可以为滑坡易发性管理提供新的思路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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